Media optimization using transcription analysis

ABSTRACT

A system and method for optimizing the price of a call to a business and the placement of a business&#39; information within an ad buy on a Web page are disclosed. A call is received by a client from a potential consumer of a product. The call is transcribed into a text call stream on both the consumer and the client sides of the call. Patterns are extracted from the call. The patterns extracted may be applied against patterns relevant to the client. Patterns relevant to the client may be tied to certain goals of the business of the client that indicate successful business transactions between the consumer and the client or that indicate a service provide by the client. Extracted patterns may be used to adjust the price of the call based on the client&#39;s willingness to pay for a call containing patterns relevant to the client.

CROSS-REFERENCE TO RELATED APPLICATIONS

This application claims the benefit of U.S. provisional patent application No. 61/241,174 filed Sep. 10, 2009, the disclosure of which is incorporated herein by reference in its entirety.

FIELD OF THE INVENTION

The present invention relates generally to telecommunications, and more particularly, to a method and system for optimizing the price of a call to a business and the placement of Web ads for the business by matching patterns indicating a level of relevance to the business in transcriptions of calls between consumers and the business.

BACKGROUND OF THE INVENTION

A business (hereinafter, the “client(s)”) may rely heavily on services rendered via telecommunications. The business/client desires to make as many high qualities calls with customers (hereinafter, the “consumer(s)), such as an inquiry about a particular service. At the same time, the client seeks to mitigate risk and model their expected return on investment (ROI). While many telecommunications service providers offer their telephone clients “pay per call” billing models, whereby the client only pays when a client receives a phone call from a potential consumer, the “pay per call” billing model has several disadvantages.

Telecommunications service providers may provide a unique telephone number to a client to track consumer usage. Unfortunately, a call may be received by a client from someone who misdialed or otherwise accidently called the tracked telephone number. Some telecommunications service providers try to overcome this problem by charging clients based on a set of billing rules, such as not billing for calls lasting under 12 seconds in length. Such billing rules may evaluate properties such as call length, but such services based on billing rules do not attempt to analyze the call content itself. While services based on billing rules may remove some undesirable calls from being billed to a client, the billing rules do not account for variable value in the calls received by a client. Services based on billing rules may fail to remove calls from undesirable sources, such as telemarketers. Further, some consumers may call for maintenance of a car part, while other consumers may call to have the car part replaced, the latter being more valuable to the client. Additionally, services based on billing rules generally do not allow a client to be billed for different patterns observed on calls, thereby potentially misaligning a client's ROI with purchases the client made for advertising their tracked telephone number, for example, on certain Web sites (hereinafter, an “ad buy”).

Accordingly, what would be desirable, but has not yet been provided, is a method and system for optimizing ad buys by comparing patterns matched in a transcription of a telephone call between a client and a consumer with patterns that are relevant to the client. Such patterns are correlated to calls with variable rates that depend on a client's willingness to pay more for calls having more desirable content.

SUMMARY OF THE INVENTION

The above-described problems are addressed and a technical solution is achieved in the art by providing a method and system for optimizing the price of a call to a business and the placement of a business' information within an ad buy on a Web page. A call is received by a client from a potential consumer of a product. The call is transcribed into a text call stream on both the consumer and the client sides of the call. As used herein, the term “client” may refer to any person or organization that may employ the method and/or system of the present invention, which may include, but is not limited to, an individual, a non-profit organization such as a university, and a for-profit business. As used herein, the term “consumer” may refer to any person or organization that may call into the system using the method of the present invention, which may include, but is not limited to, an individual, a non-profit organization such as a university, and a for-profit business. Patterns are extracted from the call. The patterns extracted may be applied against patterns relevant to the client. Patterns relevant to the client may be tied to certain goals of the business of the client that indicate successful business transactions between the consumer and the client or services provided by the client. Extracted patterns may be used to adjust the price of the call based on the client's willingness to pay for a call containing a high degree of significant patterns. The price charged for the call may be based on a multiplication factor and/or a flat rate additional charge.

Optionally, if a client advertises on a Web site, the placement or prominence of that client's information in an ad buy may be raised or otherwise made more visible to a customer that views an ad buy for the services rendered by the client based on the valuable extracted patterns. Optionally, a client associated with relevant patterns may trigger the purchase of more ad buys for the client on possibly more Web sites.

The present invention is not restricted to the placement of ad buys on Web pages. Certain embodiments of the present invention are applicable to the more general case of ad buys that are located anywhere a tracked phone number may be placed. For example, ad buys may be placed in text messages on cell phones or inserted into chat streams in an instant messaging service. Even a billboard or non-online media are applicable.

According to an embodiment of the present invention, a method for optimizing the price a client will pay for receiving a call from a consumer is disclosed, comprising the steps of: receiving a call from a consumer; transcribing the call; extracting at least one pattern from the transcribed call; applying the at least one pattern from the transcribed call against at least one pattern relevant to the client; and adjusting the price of the call to the client based on the at least one pattern relevant to the client. Adjusting the price of the call may be further based on the client's willingness to pay for a call based on the at least one pattern relevant to the client. The at least one pattern relevant to the client may be tied to the client's business goals. The at least one pattern relevant to the client may be based on successful business transactions between the consumer and the client or a service provided by the client. Adjusting the price of the call may be further based on the value of the at least one pattern relevant to the client to the client's business goals. The price of a call may be adjusted by means of at least one of a multiplication factor and a flat rate additional charge.

According to an embodiment of the present invention, the at least one pattern relevant to the client is one of common to all calls, common to the type of service of the client, and customized to a particular client. The at least one pattern relevant to the client may be represented by at least one of a text strings, a regular expression, and the result of analysis of the context of the at least one pattern in the transcribed call. The at least one pattern relevant to the client may be extracted using term frequency analysis in an off-line learning step.

According to an embodiment of the present invention, at least one of the placement and prominence of information pertaining to a client on a Web page is made more visible to the consumer viewing the information based on the at least one pattern relevant to the client. The information pertaining to the client in an ad buy is listed higher in the ad buy according to a weighting that takes into account the probability of occurrence of the at least one pattern relevant to the client having been spoken during a call. Ordering of a display of client in an ad buy may be determined by a scoring algorithm. The scoring algorithm may based on a learning system that uses revenue and percent of calls that have a pattern match or which mixes the pattern relevant to the client with distance from the consumer.

According to an embodiment of the present invention, applying the at least one pattern from the transcribed call against at least one pattern relevant to the client triggers the purchase of at least one ad buy for the client. The at least one ad buy may be located wherever a tracked telephone number is placed. The at least one ad buy may be placed on at least one of a Web page, a text messages on a cell phone, a portion of a chat streams in an instant messaging service, and non-online media.

BRIEF DESCRIPTION OF THE DRAWINGS

The present invention will be more readily understood from the detailed description of an exemplary embodiment presented below considered in conjunction with the attached drawings, of which:

FIG. 1 is a process flow diagram illustrating exemplary steps for optimizing the price of a call to a business and the placement of a business' information within an ad buy on a Web page, according to an embodiment of the present invention;

FIG. 2 depicts a system for optimizing the price of a call to a business and the placement of a business' information within an ad buy on a Web page, according to an embodiment of the present invention;

FIGS. 3A-3G show examples of tables located in the data store of the system of FIG. 2 for processing calls, patterns, call pricing, and ad buys, according to an embodiment of the present invention;

FIG. 4 is a process flow diagram illustrating exemplary steps for execution of a consumer request for a list of clients online, according to an embodiment of the present invention;

FIG. 5 is a process flow diagram illustrating exemplary steps for performing pattern matching and billing off-line at periodic intervals, instead of on a per call basis, according to an embodiment of the present invention; and

FIG. 6 is a process flow diagram illustrating exemplary steps that may be executed when a call is received by a client from a consumer as described in FIG. 1 in greater detail, according to an embodiment of the present invention.

It is to be understood that the attached drawings are for purposes of illustrating the concepts of the invention and may not be to scale.

DETAILED DESCRIPTION OF THE INVENTION

FIG. 1 is a process flow diagram illustrating exemplary steps for optimizing the price of a call to a business and the placement of a business' information within an ad buy on a Web page, according to an embodiment of the present invention. At step 10, a call is received by a client from a potential consumer of a product. At step 12, the call is transcribed into a text call stream on both the consumer and the client sides of the call. The audio waveform of a call stream is stored, with one (e.g., the left) channel being associated with the consumer and the other (e.g., the right) channel being associated with the client. Each of the channels is transcribed separately with timing data stored. At step 14, patterns are extracted from the call. The specific patterns may be common to all calls, such as “I'd like to make an appointment,” common to the type of service of the client, such as the pattern “euthanasia,” which may be relevant to veterinarians, or even customized to a particular client. The patterns may be represented by simple text strings, regular expressions, or may be subject to more complex algorithmic analysis of the context of the transcription. Relevant patterns may be identified before any calls are received by a subject matter expert that may consult the client or determine patterns on their own, or by software that that examines transcriptions of calls received by clients that extracts patterns using term frequency analysis in an off-line learning step. As a result of the pattern matching step, the identity of the consumer may be determined. As part of the identification process, non-consumer fraudulent call data or wrong number telephone calls are automatically filtered out of the call.

At step 16, the patterns extracted in step 14 are applied against patterns relevant to the client. Patterns relevant to the client may be tied to certain goals of the business of the client, such as an inquiry about a service rendered by the client, e.g., “vaccines” plus “making an appointment to receive a vaccine” for a client that is a veterinarian. Relevant patterns may be identified before any calls are received by a subject matter expert that may consult the client or determine patterns on their own, or by software that that examines transcriptions of calls received by clients that extracts patterns using term frequency analysis in an off-line learning step. At step 18, valuable extracted patterns are used to adjust the price of the call based on the client's willingness to pay for a call containing significant patterns. The price charged for the call may be based on a multiplication factor and/or a flat rate additional charge.

At an optional step 20, if the client advertises on a Web site, the placement or prominence of that client's information may be raised or otherwise made more visible to a future customer that views an ad for the services rendered by the client based on the valuable extracted patterns. For example, a link on a Web site may advertize veterinary service, with a click on the link directing the customer to another Web page listing veterinarians by name, address, and telephone number. The order of the listed veterinarians may be altered such that a veterinarian that has received one or more calls that have relevant patterns may be raised higher in the list or otherwise displayed more prominently (e.g., the listing is in a larger font or a “brighter” color font). At an optional step 22, a client receiving relevant patterns may trigger the purchase of more ad buys for the client on possibly more Web sites. The execution of optional steps 20 and 22 may result in a positive feedback loop that benefits the client. If pattern analysis indicates that vaccine calls make more money, then identification information of the client in Web ads becomes more prominent and more ad buys are made on behalf of the client. The prominence of the client in a Web ad may lead to more successful calls/patterns, which leads to more prominent ads and ad buys, etc.

FIG. 2 depicts a system 30 for optimizing the price of a call to a business and the placement of a business' information within an ad buy on a Web page, according to an embodiment of the present invention. The system 30 includes a telephony server 32, the telephony server 32 being associated with a data store 34, an analysis server 36, a Web server 38, and a data entry terminal/computer 40. The telephony server 32 may be a traditional private branch exchange (PBX) or a voice-over-IP (VOIP) server. The telephony server 32 is configured for intercepting calls from consumers 42 a-42 n via the public switched telephone network (PSTN) 44, the Internet 46, or both; for completing those calls to clients 48 a-48 n over the PSTN 44, the Internet 46, or both; for bridging calls between the consumers 42 a-42 n and the clients 48 a-48 n; for recording telephone calls received by the clients 48 a-48 n; and for logging the recorded calls and the caller IDs to the data store 34.

The analysis server 36 is configured for maintaining a database of the clients 48 a-48 n (See table 1 hereinbelow); for transcribing received telephone calls into voice-recognized text call streams; for tracking and matching consumers to clients; for analyzing and extracting patterns within and among the call streams to produce key words or phrases that are relevant to a client 48 a-48 n; for adjusting the price of a call to a client 48 a-48 n as determined by tables to be described hereinbelow; for providing a media tracking system that collects information from Web site visitors (i.e., the consumers 42 a-42 n visiting Web sites through terminals 43 a-43 n) that click on ad buys and receive search results that display the clients 48 a-48 n in order of receiving more relevant patterns from the database of the clients 48 a-48 n of Table 1, possibly restricted to a local geographic area; for providing code for matching a usable percentage of a set of client calls back to consumer that visit a specific ad buy (Web site ad); and for determining whether to increase or decrease the number of ad buys for clients 48 a-48 n depending on the number of detected relevant patterns.

The data store 34 stores a number of tables needed for analysis and for storing and the retrieval of call streams to be described in connection with FIGS. 3A-3G corresponding to Tables 1-7 hereinbelow. A subject matter expert may enter typical key word patterns to be extracted from calls manually via the data entry terminal/computer 40. Alternatively, key word patterns may be provided by third party software. The Web server 38 is configured for presenting call patterns of calls received from the consumers 48 a-48 n to the clients 48 a-48 n in the form of formatted call logs, and for formatting and displaying Web pages containing ads pertaining to the clients 48 a-48 n at one or more terminals/personal computer/workstations 43 a-43 n used by the consumers 42 a-42 n.

The telephony server 32, the analysis server 36, and the Web server 38 may each comprise at least one processor, which may be included in a personal computer, a work station, a mainframe computer, or any other device having enough processing power for carrying out the present invention. Alternatively, one or more of the servers/computers 32, 36, 38 may be aggregated into one or more processors running on a single personal computer, a work station, or a mainframe computer.

Each of the clients 48 a-48 n may have a voice line or VOIP telephone 48 a-48 n configured to receive inbound calls via the telephony server 32. Each of the clients 48 a-48 n may have one or more terminals/personal computer/workstations 50 a-50 n for logging into the Web server 38 in order to view formatted call logs. Each of the consumers 42 a-42 n may have one or more terminals/personal computer/workstations 43 a-43 n for viewing Web sites over the Internet 46 that may receive ad buys of the clients 48 a-48 n via the Web server 38. The client 48 a may communicate with a consumers 42 a over the PSTN 44 if the telephony server 32 is a PBX, the client 48 a have a voice line phone, and the consumer 48 a has a voice line phone; over the Internet 46 and the PSTN 44 if the telephony server 32 is a VOIP server, the client 48 n has a VOIP phone, and the consumer 42 a has a voice line phone; and, over the Internet 46 if the telephony server 32 is a VOIP server and the client 48 n has a VOIP phone.

FIGS. 3A-3G show examples of tables (i.e., Tables 1-7, respectively) located in the data store 34 for processing calls, relevant patterns, success patterns, call pricing, and ad buys, according to an embodiment of the present invention. In FIG. 3A, a client Table 1 includes a plurality of records 60. Each of the records 60 corresponds to one of the clients 48 a-48 n. Each of the records 60 contains fields for at least a numerical client ID 62, the industry 64 associated with a client 48 a-48 n, the name 66 of the client 48 a-48 n, the telephone number 68 associated with the client 48 a-48 n, the zip code 70 of the location of the business address of the client 48 a-48 n, and base line price per call field 72 assigned to the calls received by the client 48 a-48 n. It should be noted that the same client may have more than one record 60 corresponding to different telephone numbers 68.

In FIG. 3B, an ad buy Table 2 includes a plurality of records 73. Each of the records 73 contains fields for at least a numerical ad buy ID 74 and an ad buy name 76.

In FIG. 3C, a pattern Table 3 lists all of the predefined patterns that are tracking in incoming telephone calls to the clients 48 a-48 n from the consumers 42 a-42 n populated by a subject matter expert at the data entry terminal/computer 40 or determined automatically by analyzing previous calls by third party software. Each of the records 78 of Table 3 contains fields for a numerical pattern ID 80, the name of the pattern, the pattern string itself, or a regular expression 82, an optional industry field 84 associated with a type of pattern, and a success pattern field 86 that indicates that the pattern of field 82 is considered an indication of a pattern relevant to the client. A success flag is set to TRUE if a subject matter expert or third party software, after possibly consulting with a client 48 a-48 n, determines that the pattern relates to a positive outcome of a call. Success patterns may be either global or based on industry type in the industry field 84. For example, veterinary customers may consider the word “appointment” in the pattern field 82 to be a “success pattern.” Other examples may include a pattern indicating payment information or a discussion of directions to the client's facility or the consumer's house.

In FIG. 3D, a client pattern billing Table 4 lists client-to-pattern billing information. Each of the records 88 of Table 4 contains fields for a numerical client ID 90 (see Table 1), a numerical pattern ID 92 (see Table 3), and a charge multiplier field 94, which is the ratio to multiply the baseline price per call 72 of Table 1 for charging a client identified by the client ID 90 if a pattern is found in a call which matches a pattern indicated by the pattern ID 92. Table 4 may further include a charge addition field 96 which is fixed additional amount to add to a charge for a call if a pattern indicated by the pattern ID 92; a requirement flag field 98 which indicates if a certain pattern must be matched in order to be billed; and an exclusion field 100 which indicates if a certain pattern must not be matched in order to be billed.

In operation, when a call is received by one of the clients 48 a-48 n, the patterns extracted by the analysis server 36 are loaded into working memory and referenced by pattern ID 92 for future reference (see Table 3). The analysis server 36 checks Table 4 for a matching billing modifier for adjusting the price of the call to the client 48 a-48 n based on the presence of at least one of a charge multiplier 94, a charge addition 96, a requirement flag 98, and an exclusion 100.

Once calls have been analyzed for patterns, the analysis server 36 may run the matched patterns through an algorithm to further match one or more patterns to a Web site visit and/or an ad buy. Then, the analysis server 36 loops over the ad buys and patterns found in the call from the designated ad buy to derive statistics to be stored in a table, such as the ad buy-to-spoken pattern statistics Table 5 as shown in FIG. 3E. Table 5 includes records 102, each containing a numerical ad buy field 104 (see Table 2), a numerical pattern ID field 106 (see Table 3), the percentage of calls containing the pattern 108, the number of calls containing the pattern 110, and the average price of calls 112 containing the pattern.

Additionally, once calls have been analyzed for patterns, the patterns for calls may be aggregated by industry, pattern, and client to form a table, such as the client spoken pattern statistics Table 6 as shown in FIG. 3F. Table 6 includes records 114, each containing a client industry field 116, a numerical client ID field 118, a numerical pattern ID field 120, the number of calls to the client containing the pattern 122, the percentage of calls to this client containing the pattern 124, the percentage of calls to this client containing the pattern that also have a matching success pattern 126, and the average billed price of matching calls 128 to this client that contain this pattern. Embodiment of the present invention may span all clients in an industry as well as excluding certain client IDs.

As referenced above, the data store 34 may be populated by the analysis server 36 with a global call Table 7 as shown in FIG. 3G. The call Table 7 may include records 130, each containing a numerical call ID field 132, a consumer phone number field 134, a numerical client ID field 136, a final charge field 138 for a given call, as well as a patterns matched field 140 during the call.

FIG. 4 is a process flow diagram illustrating exemplary steps for execution of a consumer request for a list of clients online, according to an embodiment of the present invention. For example, a consumer 42 a-42 n may request a list of providers (i.e., the clients 48 a-48 n) within a zip code over the Internet 46. At step 150, the ad buy that originated the request is indexed into Tables 2 and 5. At step 152, the eligible clients to display in the local area may be found by zip code in Table 1. At step 154, the corresponding spoken patterns previously detected for calls corresponding to the ad buy may be retrieved from Table 5. At step 156, metrics are retrieved from Table 6 for each spoken pattern for each eligible client. For example, the clients that are in or near the entered zip code may be compared in accordance with their revenue from calls containing the spoken patterns as stored in Table 6. At step 158, clients are scored based on a weighting probability of a spoken pattern occurring and one or more target metrics retrieved from step 156. For example, if the Google “animal boarding” ad buy of Table 2 results in calls that contain patterns relating to pet boarding services, Table 6 may be consulted to find eligible clients that have statistics relating to pet boarding patterns. If one client is more likely to produce a valuable metric (e.g., revenue generated as per the average billed price of matching calls 128 or the percentage of calls to this client containing the pattern that also have a matching success pattern 126), that client may be listed higher in the ad buy according to a weighting that takes into account the probability of occurrence of the spoken pattern during a call from the ad buy. For example, one such scoring algorithm for determining the ordering of search results may be:

Client Ranking Score=Sum of (probability of spoken pattern from this ad buy*revenue extracted from calls with spoken pattern by this client)

In this way, clients that are more likely to monetize relevant spoken patterns for the ad buy will show up higher in the ad buy and receive more telephone calls from consumers. In certain embodiments, the scoring algorithm may be more sophisticated, for example, a learning system that uses revenue and percent of calls that have a pattern match and a success pattern or which mixes these metrics with distance from the consumer.

Returning to FIG. 4, in an optional step 160, other optimization methods are combined with the spoken pattern optimization score obtained in step 158. At step 162, the list of clients is displayed to the consumer.

FIG. 5 is a process flow diagram illustrating exemplary steps for performing pattern matching and billing off-line at periodic intervals, instead of on a per call basis, according to an embodiment of the present invention. At step 170, at least one ad buy is indexed from Table 2. At step 172, matching calls are identified in the ad buy. At step 174, the recording for each matching call is retrieved and transcribed or already matching transcribed calls are retrieved from the data store 34. At step 176, patterns are identified in the transcribed matching calls. For example, once patterns have been established in Table 3, a loop through transcribed matching calls may be executed to look for the patterns in Table 3. At step 178, ad buy-to-pattern statistics may be generated. For example, the count of matching patterns and derived statistics may be stored in a Table 5. The billing calculation for what to charge a client 48 a-48 n for a call may be stored in Table 7 according to the client's pattern matching criteria as listed in Table 3. At step 180, client to pattern statistics may be generated. For example, which patterns were matched in a call may be stored in Table 7 for media optimization and may be used to present information to the client 48 a-48 n in a user interface at the terminal 50 a-50 n.

FIG. 6 is a process flow diagram illustrating exemplary steps that may be executed when a call is received by a client 48 a-48 n from a consumer 42 a-42 n as described in FIG. 1 in greater detail. At step 182, corresponding to step 10 of FIG. 1, a call is received by a client 48 a-48 n from a potential consumer 42 a-42 n of a product. At step 184 corresponding to step 12 of FIG. 1, the call is transcribed. Alternatively, the call may be recorded in the data store 34 and later transcribed off line along with the remaining steps of FIG. 6. At step 186, eligible patterns for detection are retrieved from Table 3 based on patterns associated with the industry corresponding to the client 48 a-48 n and global patterns. At step 188 corresponding to step 14 of FIG. 1, patterns are extracted from the call. At step 190 corresponding to step 16 of FIG. 1, the patterns extracted in 188 are applied against at least one pattern relevant to the client 48 a-48 n (which may be derived from the success pattern field 86 of Table 3). At step 192 corresponding to step 18 of FIG. 1, for each detected pattern, the client's price per call may be modified by applying billing modifiers (i.e., the charge multiplier field 94 and the charge addition field 96) from Table 4. At step 194, the final price to charge the client 48 a-48 n is stored in Table 7.

The present invention is subject to variations. The present invention is not restricted to the placement of ad buys on Web pages. Certain embodiments of the present invention are applicable to the more general case of ad buys that are located anywhere a tracked phone number may be placed. For example, ad buys may be placed in text messages on cell phones or inserted into chat streams in an instant messaging service. Even a billboard or non-online media are applicable.

It is to be understood that the exemplary embodiments are merely illustrative of the invention and that many variations of the above-described embodiments may be devised by one skilled in the art without departing from the scope of the invention. It is therefore intended that all such variations be included within the scope of the following claims and their equivalents. 

What is claimed is:
 1. A computer-implemented method for optimizing the price a client will pay for receiving a call from a consumer, comprising the steps of: receiving a call from a consumer; transcribing the call; extracting at least one pattern from the transcribed call; applying the at least one pattern from the transcribed call against at least one pattern relevant to the client; and adjusting the price of the call to the client based on the at least one pattern relevant to the client.
 2. The method of claim 1, wherein adjusting the price of the call is further based on the client's willingness to pay for a call based on the at least one pattern relevant to the client.
 3. The method of claim 1, wherein the at least one pattern relevant to the client is tied to the client's business goals.
 4. The method of claim 3, wherein the at least one pattern relevant to the client is based on successful business transactions between the consumer and the client.
 5. The method of claim 3, wherein the at least one pattern relevant to the client is based on an inquiry into a service provided by the client.
 6. The method of claim 1, wherein adjusting the price of the call is further based on the value of the at least one pattern relevant to the client to the client's business goals.
 7. The method of claim 1, wherein the price of a call is adjusted by means of at least one of a multiplication factor and a flat rate additional charge.
 8. The method of claim 1, wherein the at least one pattern relevant to the client is one of common to all calls, common to the type of service of the client, and customized to a particular client.
 9. The method of claim 8, wherein the at least one pattern is represented by at least one of a text strings, a regular expression, and the result of analysis of the context of the at least one pattern relevant to the client in the transcribed call.
 10. The method of claim 1, wherein the at least one pattern relevant to the client is extracted using term frequency analysis in an off-line learning step.
 11. The method of claim 1, wherein at least one of the placement and prominence of information pertaining to a client on a Web page is made more visible to the consumer viewing the information based on the at least one pattern relevant to the client.
 12. The method of claim 11, wherein the information pertaining to the client in an ad buy is listed higher in the ad buy according to a weighting that takes into account the probability of occurrence of the at least one pattern relevant to the client having been spoken during a call.
 13. Them method of claim 12, wherein ordering of a display of client in an ad buy is determined by a scoring algorithm.
 14. The method of claim 13, wherein the scoring algorithm conforms to the equation: Client Ranking Score=Sum of (probability of spoken pattern from the ad buy*revenue extracted from calls with spoken pattern by the client)
 15. The method of claim 13, wherein the scoring algorithm is based on a learning system that uses revenue and percent of calls that have a pattern match or which mixes a pattern match with distance from the consumer.
 16. The method of claim 1, wherein the step of applying the at least one pattern from the transcribed call against at least one pattern relevant to the client triggers the purchase of at least one ad buy for the client.
 17. The method of claim 16, wherein the at least one ad buy is located wherever a tracked telephone number is placed.
 18. The method of claim 17, wherein the at least one ad buy is placed on at least one of a Web page, a text messages on a cell phone, a portion of a chat streams in an instant messaging service, and non-online media.
 19. The method of claim 1, wherein the at least one pattern relevant to the client is extracted using term frequency analysis in an off-line learning step.
 20. The method of claim 1, wherein at least one of the placement and prominence of information pertaining to a client on a Web page is made more visible to the consumer viewing the information based on the at least one pattern relevant to the client.
 21. The method of claim 20, wherein the information pertaining to the client in an ad buy is listed higher in the ad buy according to a weighting that takes into account the probability of occurrence of the at least one pattern relevant to the client having been spoken during a call.
 22. The method of claim 1, wherein ordering of a display of clients in an ad buy is determined by a scoring algorithm.
 23. The method of claim 1, further comprising the step of receiving at least one success pattern, wherein the at least one success pattern triggers the purchase of at least one ad buy for the client.
 24. The method of claim 23, wherein the at least one ad buy is located wherever a tracked telephone number is placed.
 25. A system for automatically optimizing the price a client will pay for receiving a call from a consumer, comprising: a telephony server configured for extracting the identity of a caller from a call received by the client; and an analysis server configured for: receiving a call from a consumer; transcribing the call; extracting at least one pattern from the transcribed call; applying the at least one pattern against at least one pattern relevant to the client; and adjusting the price of the call to the client based on at least one of the at least one pattern relevant to the client.
 26. The system of claim 25, wherein adjusting the price of the call is further based on the client's willingness to pay for a call based on at the at least one pattern relevant to the client.
 27. The system of claim 25, wherein at least one of the at least one pattern relevant to the client is tied to the client's business goals.
 28. The system of claim 27, wherein at least the at least one pattern pattern relevant to the client is based on successful business transactions between the consumer and the client.
 29. The system of claim 27, wherein the at least one pattern relevant to the client is based on an inquiry into a service provided by the client.
 30. The system of claim 25, wherein adjusting the price of the call is further based on the value of the at least one pattern relevant to the client to the client's business goals.
 31. The system of claim 25, further comprising a Web server configured for placing an ad buy on a Web page, wherein the placement and prominence of information pertaining to a client on the Web page is made more visible to the consumer viewing the information based on the at least one one pattern relevant to the client.
 32. The system of claim 31, wherein the information pertaining to the client in an ad buy is listed higher in the ad buy according to a weighting that takes into account the probability of occurrence of the at least one pattern relevant to the client being spoken during a call.
 33. The system of claim 25, wherein the Web server is further configured for receiving at least one pattern relevant to the client, wherein the least one pattern relevant to the client triggers the analysis server to purchase at least one ad buy for the client. 